4.5 Article

Comparison of deterministic and stochastic SIS and SIR models in discrete time

Journal

MATHEMATICAL BIOSCIENCES
Volume 163, Issue 1, Pages 1-33

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/S0025-5564(99)00047-4

Keywords

epidemic; stochastic; quasi-stationary; Markov process

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The dynamics of deterministic and stochastic discrete-time epidemic models are analyzed and compared. The discrete-time stochastic models are Markov chains, approximations to the continuous-time models. Models of SIS and SIR type with constant population size and general force of infection are analyzed, then a more general SIS model with variable population size is analyzed. In the deterministic models, the value of the basic reproductive number R-0 determines persistence or extinction of the disease. If R-0 < 1, the disease is eliminated, whereas if R-0 > 1, the disease persists in the population. Since all stochastic models considered in this paper have finite state spaces with at least one absorbing state, ultimate disease extinction is certain regardless of the value of R-0 However, in some cases, the time until disease extinction may be very long. In these cases, if the probability distribution is conditioned on non-extinction, then when R-0 > 1, there exists a quasi-stationary probability distribution whose mean agrees with deterministic endemic equilibrium. The expected duration of the epidemic is investigated numerically. (C) 2000 Elsevier Science Inc. All rights reserved.

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